Introduction to Machine Learning and Deep Learning Using Python
Do you want to take your first step into the world of data? Learn machine learning and deep learning, the core technologies of AI, with Python. This course will guide you step by step, from the basics of machine learning and deep learning to practical applications. Traditional machine learning and deep learning are based on many of the same principles and technical systems. Therefore, this course does not separate the two into separate subjects, but rather organizes them into one connected course so that beginners can increase their understanding of machine learning as a whole.
Traditional machine learning models using sklearn (linear regression, KNN, Decision Tree, Ensemble, KMeans, PCA, etc.)
Principles of Neural Network Learning
Deep learning models using tensorflow and keras (Dense, CNN, RNN, Autoencoder, GAN, etc.)
Server deployment of machine learning models
Artificial intelligence, machine learning, deep learning… Let me paint you a concrete picture!
Artificial intelligence , really Is it difficult to learn? 😮
They say that artificial intelligence requires math, but I'm a math nerd... I'm interested, but how do I get started?
I'm a middle manager, so I need to learn something about artificial intelligence, but I don't have time to study Python...
Are you interested in artificial intelligence but unsure where to start? Hesitant because you think learning it requires a lot of mathematical knowledge? Indeed, machine learning, a branch of artificial intelligence, has a long history and countless algorithms, making learning it a time-consuming process. While the advent of deep learning has made many traditional machine learning models obsolete, some still play a crucial role.
This course is designed for students, developers, and business managers who are struggling to get started with AI. It introduces traditional machine learning models that are still relevant today and provides a foundation for building deep learning models using TensorFlow and Keras . With a curriculum that focuses on minimal theory and a strong focus on practice, we aim to share with a wider audience the fact that implementing AI models isn't difficult. Let's take on the challenge together!
The reality of artificial intelligence I'll draw it in your head.
The number of water blisters Anyone So that I can
I tried to create lectures that do not require any mathematical knowledge to understand.
For the koalmot Python that cracks quickly
To help you maximize your learning efficiency, we offer a crash course on the programming language Python. (It's also not a bad idea to first briefly review the Python syntax necessary for AI, then delve deeper into the Python language.)
Reduce the theory Experience is heightened
We have designed the lectures to be practical and minimize theoretical explanations so that you can visualize the reality of artificial intelligence in your mind.
How Deep Learning Works
K-Nearest Neighbors Model Practice
Decision Tree Model Practice
Understanding Feature Engineering Concepts
Implementing Deep Learning Models
Check out the Q&A ! 💬
Q. I am a math dropout. Can I still learn math without any knowledge?
I, too, was a math failure. This course doesn't require any prior math knowledge. The necessary math knowledge will be explained throughout the class.
Q. Do I need to know Python?
We offer a crash course that allows you to easily learn Python syntax. You can get started without any prior Python knowledge. Learn Python while studying machine learning.
Q. I'm a liberal arts student. Will this be difficult to understand?
Artificial intelligence is the knowledge essential for today's liberal arts students to survive. Take the plunge now!
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Who is this course right for?
Machine Learning Beginner
Deep Learning Beginner
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